TECHNICAL FIELD
[0001] The present invention relates to a failure diagnostic device for and a failure diagnostic
method of performing a failure diagnosis on a multi-axis robot.
BACKGROUND ART
[0002] Patent Literature 1 has been disclosed as a conventional failure diagnostic method
for an articulated industrial robot. In the failure diagnostic method disclosed in
Patent Literature 1, while a robot is in operation, the movement position of each
joint shaft of the robot and the disturbance torque applied to the joint shaft are
detected at predetermined intervals, and the average of the disturbance torque at
each detected movement position is calculated. Then, this average and a preset threshold
are compared and, if the average is greater than the preset threshold, it is determined
that the robot is experiencing an abnormality or failure.
CITATION LIST
PATENT LITERATURE
[0003] Patent Literature 1: Japanese Patent Application Publication No.
Hei 9-174482
SUMMARY OF INVENTION
[0004] However, the disturbance torque can differ depending on the robot that executes the
operation. Thus, it has been necessary to set a different threshold for each robot
in advance.
[0005] The present invention has been made in view of the above problem, and an object thereof
is to provide a failure diagnostic device and a failure diagnostic method capable
of performing an accurate failure diagnosis using a fixed threshold regardless of
which robot executes the operation.
[0006] In order to solve the above problem, one aspect of the present invention provides
a failure diagnostic device for and a failure diagnostic method of performing a failure
diagnosis on a multi-axis robot, which: calculate a disturbance-torque reference value
from each disturbance torque detected during execution of a predefined routine operation;
correct the disturbance torque by using the calculated disturbance-torque reference
value; and perform a failure diagnosis by comparing the corrected disturbance torque
and a threshold.
BRIEF DESCRIPTION OF DRAWINGS
[0007]
[Fig. 1] Fig. 1 is a block diagram illustrating the overall configuration of a failure
diagnostic system 100 including a failure diagnostic device 23 according to a first
embodiment.
[Fig. 2] Fig. 2 is a block diagram illustrating details of a method of calculating
a disturbance torque (Tq).
[Fig. 3] Fig. 3 is a block diagram illustrating details of a computation processing
part 18a in Fig. 1.
[Fig. 4] Part (a) of Fig. 4 is a graph illustrating time-series changes in disturbance
torques (Tqa, Tqb), and part (b) of Fig. 4 is a graph illustrating corrected disturbance
torques (Tqa', Tqb') in a case where a representative value is the average of the
disturbance torque (Tq) and an amount of change is the standard deviation of the disturbance
torque (Tq).
[Fig. 5] Part (a) of Fig. 5 is a graph illustrating time-series changes in the disturbance
torques (Tqa, Tqb), which is the same as part (a) of Fig. 4, and part (b) of Fig.
5 is a graph illustrating the corrected disturbance torques (Tqa', Tqb') in a case
where the representative value is the smallest value of the disturbance torque (Tq)
and the amount of change is the difference between the largest value and the smallest
value of the disturbance torque (Tq).
[Fig. 6] Fig. 6 is a flowchart illustrating a failure diagnostic method according
to the first embodiment.
[Fig. 7] Fig. 7 is a block diagram illustrating the overall configuration of a failure
diagnostic system 200 including a failure diagnostic device 23 according to a second
embodiment.
[Fig. 8] Fig. 8 is a block diagram illustrating details of a computation processing
part 18b in Fig. 7.
[Fig. 9] Fig. 9 is a graph explaining a method of predicting a disturbance-torque
normal value(R') without a seasonal fluctuation component taken into account.
[Fig. 10] Fig. 10 is a graph explaining approximation of the seasonal fluctuation
component, present in a disturbance torque, with a sinusoidal wave.
[Fig. 11] Fig. 11 is a graph explaining a method of predicting the disturbance-torque
normal value (R') with the seasonal fluctuation component taken into account.
[Fig. 12] Fig. 12 is a flowchart illustrating an example of a method of setting a
threshold (α) in the second embodiment.
[Fig. 13] Fig. 13 is a graph illustrating an example where the disturbance torque
(Tq) greatly decreases due to implementation of repair or maintenance.
DESCRIPTION OF EMBODIMENTS
[0008] Some embodiments employing the present invention will now be described with reference
to the drawings. Identical portions illustrated in the drawings will be denoted by
identical reference signs, and description thereof will be omitted.
[First Embodiment]
[0009] The overall configuration of a diagnostic system 100 including a failure diagnostic
device 23 according to a first embodiment will be described with reference to Fig.
1. The failure diagnostic system 100 is formed of a robot 1, a failure diagnostic
device 23, and a production management device 4. The failure diagnostic device 23
includes a robot control unit 2 and a failure diagnostic unit 3.
[0010] The robot 1 is a multi-axis-machine teaching-playback robot as an example of a multi-axis
robot. The robot 1 includes motor drive systems as joint shafts being operation shafts.
The robot arm 5 is driven by a servomotor (hereinafter simply referred to as the motor)
6 through a reducer 8. To the motor 6 is attached a pulse coder (pulse generator or
encoder) 7 being a component for detecting its rotational angle position and speed.
[0011] The robot control unit 2 includes an operation integrated control part 9, a position
detection part 24, a communication part 10, a servo control part 11 (an example of
a torque detection part), and a servo amplification part 14. The servo control part
11 drives the motor 6 through the servo amplification part 14 upon receipt of a command
from the higher-level operation integrated control part 9. The pulse coder 7, attached
to the motor 6, forms a feedback loop for a process of controlling the rotational
angle position and speed of the motor 6 between itself and the servo control part
11.
[0012] The servo control part 11 includes a processor that performs a process of controlling
the rotational angle position, speed, and current of the motor 6, an ROM that stores
a control program, and a non-volatile storage that stores preset values and various
parameters. The servo control part 11 also includes an RAM that temporarily stores
data during a computation process, a register that counts position feedback pulses
from the pulse coder 7 to detect the absolute rotational angle position of the motor
6, and so on.
[0013] The servo control part 11 forms circuitry that detects disturbance torques (Tq) applied
to the joint shafts by causing the processor to execute a pre-installed computer program.
The servo control part 11 includes a disturbance-torque computation part 12 and a
state-data acquisition part 13 as the above circuitry.
[0014] The state-data acquisition part 13 regularly collects various data on the state of
actuation of each joint shaft of the robot 1 (data indicating the rotational angle
position, the speed, and the current). The disturbance-torque computation part 12
computes the disturbance torque (Tq) based on the data acquired by the state-data
acquisition part 13. The disturbance torque (Tq), computed by the disturbance-torque
computation part 12, is outputted to the failure diagnostic unit 3 through the communication
part 10. With this configuration, the servo control part 11 is in the form of what
is called a software servo. Note that details of a method of calculating the disturbance
torque (Tq) will be described later with reference to Fig. 2. The disturbance torque
(Tq) refers to the difference between a torque command value for the motor 6 and the
torque generated by the motor 6.
[0015] Note that motor drive systems as the one in Fig. 1 are required as many as the joint
shafts included in the robot 1. However, in Fig. 1, only the motor drive system for
one shaft is illustrated, and illustration of the other motor drive systems is omitted.
Also, a speed-change gear train is interposed between the motor 6 and the reducer
8 in Fig. 1 in some cases.
[0016] The position detection part 24 detects the movement position of the joint shaft provided
with the motor 6 from the absolute rotational angle position of the motor 6 acquired
by the state-data acquisition part 13. Data indicating the movement position of the
joint shaft, detected by the position detection part 24, is outputted to the failure
diagnostic unit 3 through the communication part 10 in association with data indicating
the disturbance torque (Tq). The information on the movement position of the joint
shaft and the disturbance torque, which are associated with each other, is transferred
to the failure diagnostic unit 3.
[0017] Situated in a higher level than the servo control part 11 and the position detection
part 24, the operation integrated control part 9 has direct control of the operation
of the robot 1. The communication part 10 exchanges necessary data with a communication
part 15 of the failure diagnostic unit 3 to be described below through, for example,
an LAN or the like.
[0018] The failure diagnostic unit 3 includes the communication part 15, a reference-value
database 16, a disturbance-torque database 17, and a computation processing part 18a.
The communication part 15 exchanges necessary data with the communication part 10
of the above-described robot control unit 2 and a communication part 20 of the production
management device 4 through, for example, LANs or the like.
[0019] The disturbance-torque database 17 sequentially stores pieces of the data indicating
the disturbance torques (Tq) associated with the movement positions of the joint shafts,
which are transmitted from the robot control unit 2. Past disturbance torques (Tq)
are accumulated in the disturbance-torque database 17.
[0020] The computation processing part 18a actively executes a failure diagnosis on the
robot 1 based on the disturbance torques (Tq) stored in the disturbance-torque database
17. The computation processing part 18a is equipped with a memory function, and temporarily
stores data acquired by accessing the disturbance-torque database 17 and executes
a failure diagnosis based on these data. Details of the computation processing part
18a will be described later with reference to Fig. 3.
[0021] The production management device 4 is a device that manages production information
including, for example, the operational situations of production lines in a factory,
and the like, and includes the communication part 20 and a production-information
database 21. The communication part 20 exchanges necessary data with the communication
part 15 of the failure diagnostic unit 3 through, for example, an LAN or the like.
The production-information database 21 has a function of storing various pieces of
production information collected. Thus, various previous pieces of production information
are accumulated in the production-information database 21. Note that the pieces of
production information include information on emergency stop of the robot 1 and accompanying
equipment, information on maintenance records, and the like.
[0022] An example of the method of calculating a disturbance torque (Tq) will be described
with reference to Fig. 2. The disturbance-torque computation part 12 differentiates
an actual speed Vr of the motor 6 calculated from a speed feedback signal from the
pulse coder 7 to calculate the acceleration. The disturbance-torque computation part
12 multiplies this acceleration by all inertias J applied to the motor 6 to calculate
an acceleration torque Ta. Then, the disturbance-torque computation part 12 subtracts
the acceleration torque Ta from a torque command Tc for the motor 6 calculated with
a speed loop process by the servo control part 11. From the value resulting from the
subtraction, a moment M is further subtracted to calculate a disturbance torque Tb.
Thereafter, a predetermined filtering process is performed to remove disturbance irregular
components to obtain a "disturbance torque (Tq)." By causing the servo control part
11 to execute such processing at predetermined sampling intervals, disturbance torques
(Tq) can be sequentially detected.
[0023] More specifically, the servo control part 11 includes a register, and this register
finds the absolute position of the motor 6 by counting position feedback pulses from
the pulse coder 7 at predetermined sampling intervals. Thus, the servo control part
11 detects the absolute position of the motor 6 by means of the register and, from
the absolute position of the motor 6, finds the rotational angle position (movement
position) of the joint shaft driven by the motor 6. Further, the servo control part
11 performs the processing in Fig. 2 as described above to calculate the disturbance
torque (Tq).
[0024] Details of the computation processing part 18a will be described with reference Fig.
3. The computation processing part 18a includes a microprocessor and forms a series
of computation processing circuits for performing a failure diagnosis on the robot
1 based on its disturbance torques by executing a pre-installed program. The computation
processing part 18a includes a routine-operation determination circuit 25, a reference-value
calculation circuit 26, a torque correction circuit 27, and a failure diagnostic circuit
28 as the series of computation processing circuits.
[0025] The routine-operation determination circuit 25 determines whether or not the robot
1 is executing a predefined routine operation, from the movement positions of the
joint shafts detected by the position detection part 24. The "routine operation" refers
to an operation among the operations executed by the robot 1 the content of which
is common among a plurality of robots. For example, the routine operation can be a
grinding operation of grinding a weld gun's gun tip to refresh it. The movement positions
of the joint shafts of the robot 1 at the time of executing this grinding operation
have been defined in advance. Thus, the routine-operation determination circuit 25
can determine whether or not the robot 1 is executing the predefined routine operation,
from the movement positions of the joint shafts detected by the position detection
part 24. The routine-operation determination circuit 25 reads the data on the movement
positions of the joint shafts associated with the disturbance torques from the disturbance-torque
database 17, and determines whether or not the routine operation is being executed
from the movement positions of the joint shafts.
[0026] The reference-value calculation circuit 26 calculates disturbance-torque reference
values from each disturbance torque (Tq) detected during the execution of the routine
operation. The reference-value calculation circuit 26 reads the disturbance torques
associated with the movement positions of the joint shafts determined as executing
the routine operation from the disturbance-torque database 17. From each disturbance
torque (Tq) thus read, the reference-value calculation circuit 26 calculates a representative
value of the disturbance torque (Tq) and an amount of change in the disturbance torque
(Tq) as disturbance-torque reference values. The representative value of the disturbance
torque (Tq) can be the average, median, or integral of the disturbance torque (Tq)
detected during the execution of the routine operation. The amount of change in the
disturbance torque (Tq) can be the variance, deviation, standard deviation, or difference
between the largest value and the smallest value of the disturbance torque (Tq) detected
during the execution of the routine operation.
[0027] The torque correction circuit 27 corrects a disturbance torque (Tq) by using the
disturbance-torque reference values, calculated by the reference-value calculation
circuit 26. The disturbance torque (Tq) to be corrected is a disturbance torque detected
during the execution of the routine operation. The disturbance torque (Tq) thus corrected
will be referred to as a corrected disturbance torque (Tq'). The torque correction
circuit 27 acquires a corrected disturbance torque (Tq') by subtracting the representative
value from the disturbance torque (Tq) detected during the execution of the routine
operation and dividing the value resulting from the subtraction by the amount of change.
The torque correction circuit 27 can acquire a corrected disturbance torque (Tq')
standardized between a plurality of robots 1 that execute the operation.
[0028] The failure diagnostic circuit 28 performs a failure diagnosis on the robot 1 by
comparing each corrected disturbance torque (Tq'), acquired by the torque correction
circuit 27, and a threshold (α). Specifically, the failure diagnostic circuit 28 can
determine that the robot 1 is experiencing a failure if the corrected disturbance
torque (Tq') is greater than the threshold (α). In the first embodiment, the threshold
(α) is a value unique to the predefined routine operation, and is a value fixed regardless
of which robot 1 executes this routine operation. Since the corrected disturbance
torque (Tq') is a value standardized between a plurality of robots 1, the threshold
(α) does not vary from one robot 1 to another.
[0029] A specific example of the standardization of a disturbance torque (Tq) via correction
will be described with reference to Figs. 4 and 5. Fig. 4 illustrates a specific example
of a case where the representative value is the average of the disturbance torque
(Tq) and the amount of change is the standard deviation of the disturbance torque
(Tq). Part (a) of Fig. 4 illustrates time-series changes in disturbance torques (Tqa,
Tqb) of two robots 1 executing the routine operation. Since the robots 1 are different
entities, the disturbance torques (Tqa, Tqb) detected differ greatly even when they
execute the same routine operation. Specifically, the difference between the disturbance
torques (Tqa, Tqb) can be expressed with averages (RPa, RPb) and standard deviations
(VQa, VQb) of the disturbance torques (Tqa, Tqb). Thus, for example, for the disturbance
torque (Tqa), equation (1) is used to calculate a corrected disturbance torque (Tqa').
A corrected disturbance torque (Tqb') is calculated in a similar manner. Consequently,
as illustrated in part (b) of Fig. 4, the corrected disturbance torques (Tqa', Tqb'),
which are standardized between the robots 1, can be acquired.

[0030] By comparing the absolute values of the corrected disturbance torques (Tqa', Tqb')
and the threshold (α), the failure diagnostic circuit 28 can perform failure diagnoses.
[0031] Fig. 5 illustrates a specific example of a case where the representative value is
the smallest value (mi) of the disturbance torque (Tq) and the amount of change is
the difference (VQa, VQb) between the largest value (Ma) and the smallest value (mi)
of the disturbance torque (Tq). In this case too, the torque correction circuit 27
can correct the disturbance torque (Tq) by using equation (1). The corrected disturbance
torques (Tqa', Tqb') in Fig. 5 differ from those in Fig. 4 in that they are standardized
between 0 and 1. The disturbance torques (Tqa, Tqb) in part (a) of Fig. 5 are the
same as those in part (a) of Fig. 4.
[0032] A failure diagnostic method according to the first embodiment will be described with
reference to a flowchart in Fig. 6. The failure diagnostic method according to the
first embodiment is executed using the failure diagnostic device 23 in Fig. 1.
[0033] In step S01, the state-data acquisition part 13 collects various data on the state
of actuation of each joint shaft of the robot 1 (data indicating the rotational angle
position, the speed, and the current), and the disturbance-torque computation part
12 computes the disturbance torque (Tq) based on the data acquired by the state-data
acquisition part 13. The disturbance torque (Tq), computed by the disturbance-torque
computation part 12, is outputted to the failure diagnostic unit 3 through the communication
part 10.
[0034] In step S03, the position detection part 24 detects the movement position of the
joint shaft provided with the motor 6 from the absolute rotational angle position
of the motor 6 acquired by the state-data acquisition part 13 so as to link the movement
position to the disturbance torque (Tq) acquired in step S01.
[0035] In step S05, the routine-operation determination circuit 25 determines whether or
not the robot 1 is executing a predefined routine operation, from the movement position
of the joint shaft detected by the position detection part 24. Here, the routine-operation
determination circuit 25 may instead determine the timing to execute the routine operation
by acquiring an operation time schedule for the operation procedure from the production-information
database 21. The reference-value calculation circuit 26 extracts the disturbance torque
(Tq) detected during the execution of the routine operation.
[0036] The method proceeds to step S07, in which, from the extracted disturbance torque
(Tq), the reference-value calculation circuit 26 calculates the representative value
of the disturbance torque (Tq) and the amount of change in the disturbance torque
(Tq) as disturbance-torque reference values. The method proceeds to step S09, in which
the torque correction circuit 27 corrects the disturbance torque (Tq) by using the
disturbance-torque reference values, calculated by the reference-value calculation
circuit 26, as illustrated in Figs. 4 and 5. Specifically, the torque correction circuit
27 subtracts the representative value from the disturbance torque (Tq) detected during
the execution of the routine operation and divides the value resulting from the subtraction
by the amount of change to thereby acquire a corrected disturbance torque (Tq'). The
torque correction circuit 27 can acquire a corrected disturbance torque (Tq') standardized
between a plurality of robots 1.
[0037] The method proceeds to step S11, in which the failure diagnostic circuit 28 determines
whether or not the corrected disturbance torque (Tq') is greater than the threshold
(α). If the corrected disturbance torque (Tq') is greater than the threshold (α) (YES
in step S11), the method proceeds to step S13, in which the failure diagnostic circuit
28 determines that the robot 1 is experiencing a failure. If the corrected disturbance
torque (Tq') is less than or equal to the threshold (α) (NO in step S11), the method
proceeds to step S15, in which the failure diagnostic circuit 28 determines that the
robot 1 is not experiencing any failure. The flowchart in Fig. 6 is implemented as
above regularly to perform a failure diagnosis.
[0038] As described above, the first embodiment can bring about the following advantageous
effects.
[0039] Since there are individual differences between a plurality of robots, the disturbance
torque (Tq) can differ from one robot to another even when they execute the same operation.
Even in this case, disturbance-torque reference values are calculated based on the
disturbance torque (Tq) detected during execution of a predefined routine operation,
and the disturbance torque during the execution of the routine operation is corrected
using the disturbance-torque reference values. This makes it possible to perform an
accurate failure diagnosis using a fixed threshold regardless of the individual differences
between robots. In other words, it is no longer necessary to set a different threshold
for each robot. Further, standardization is likewise possible for the plurality of
joint shafts included in a single robot.
[0040] In the case where the same robot executes a plurality of operations with different
contents, it has been necessary to set a different threshold for each operation as
a threshold for performing a failure diagnosis on the robot. To solve this, disturbance-torque
reference values are calculated from the disturbance torque (Tq) detected during execution
of a predefined routine operation, and the disturbance torque during an operation
different from the routine operation is corrected using the disturbance-torque reference
values. In this way, it is possible to obtain a corrected disturbance torque (Tq')
standardized between a plurality of different operations. Thus, a fixed threshold
can be set regardless of the contents of the operations. In other words, it is no
longer necessary to set a different threshold for each operation.
[0041] The reference-value calculation circuit 26 calculates the representative value of
the disturbance torque (Tq) and the amount of change in the disturbance torque (Tq)
as the disturbance-torque reference values. The torque correction circuit 27 acquires
a corrected disturbance torque (Tq') by subtracting the representative value from
the disturbance torque (Tq) and dividing the value resulting from the subtraction
by the amount of change. Thus, the representative value addresses the difference in
absolute value of the disturbance torque, and the amount of change addresses the difference
in range of variation of the disturbance torque. Hence, it is possible to obtain a
corrected disturbance torque (Tq') standardized between a plurality of different robots,
joint shafts, or operations.
[0042] As illustrated in Fig. 4, the representative value may be the average (RPa, RPb)
of the disturbance torque detected during execution of a routine operation, and the
amount of change may be the standard deviation (VQa, VQb) of the disturbance torque
detected during the execution of the routine operation. In this way, it is possible
to perform an accurate failure diagnosis using a fixed threshold.
[0043] As illustrated in Fig. 5, the representative value may be the smallest value (mia,
mib) of the disturbance torque detected during execution of a routine operation, and
the amount of change may be the difference (VQa, VQb) between the largest value and
the smallest value of the disturbance torque detected during the execution of the
routine operation. In this way, standardization is possible in the range of 0 to 1,
and the threshold (α) can be fixed at one value. This makes it possible to perform
an accurate failure diagnosis using a fixed threshold.
[0044] [Second Embodiment] Depending on the status of implementation of repair or maintenance
on a robot 1, its disturbance torque may greatly vary. For example, a detected disturbance
torque (Tq) gradually increases due to aged deterioration of the robot 1. However,
by implementing repair or maintenance to renew the lubricating oil of the robot 1,
the detected disturbance torque (Tq) may greatly decrease as illustrated in Fig. 13.
Thus, it is possible to perform a more accurate failure diagnosis by taking into account
the status of implementation of repair or maintenance.
[0045] The overall configuration of a failure diagnostic system 200 including a failure
diagnostic device 23 according to a second embodiment will be described with reference
to Fig. 7. The failure diagnostic system 200 is formed of a robot 1, the failure diagnostic
device 23, and a production management device 4. The failure diagnostic system 200
differs from Fig. 1 in that its failure diagnostic unit 3 further includes a maintenance-record
database 19 and that its computation processing part 18b has a different circuit configuration.
Beside these, the failure diagnostic system 200 is identical to Fig. 1.
[0046] The maintenance-record database 19 stores information on the status of implementation
of repair or maintenance on the robot 1 for each robot and each joint shaft. Past
maintenance record data are accumulated in the maintenance-record database 19.
[0047] Details of the computation processing part 18b in Fig. 7 will be described with reference
to Fig. 8. The computation processing part 18b differs from the computation processing
part 18a in Fig. 3 in that the computation processing part 18a further includes a
repair-maintenance-information acquisition circuit 29, a torque-normal-value prediction
circuit 30, and a threshold setting circuit 31.
[0048] The repair-maintenance-information acquisition circuit 29 acquires information on
the status of implementation of repair or maintenance on the robot 1 from the maintenance-record
database 19. The torque-normal-value prediction circuit 30 predicts a disturbance-torque
normal value, which is the disturbance torque at a time when the robot 1 operates
normally, by taking into account the information acquired by the repair-maintenance-information
acquisition circuit 29. The threshold setting circuit 31 sets a threshold (α) based
on the disturbance-torque normal value, predicted by the torque-normal-value prediction
circuit 30.
[0049] The torque-normal-value prediction circuit 30 predicts the disturbance-torque normal
value based on data on the disturbance torque (Tq) acquired during a predefined period
(first period). Fig. 9 illustrates the disturbance torque (Tq) acquired during the
first period (T
1). The torque-normal-value prediction circuit 30 reads the data on the disturbance
torque (Tq) from the disturbance-torque database 17. Then, the torque-normal-value
prediction circuit 30 predicts a disturbance-torque normal value (R') by using a regression
equation with the time-series change in the disturbance torque (Tq) acquired during
the first period (T
1). The first period (T
1) is, for example, one to three months. The disturbance-torque normal value (R') may
of course be predicted by using a disturbance torque (Tq) acquired through a longer
period than the first period (T
1).
[0050] For example, using the method of least squares, the torque-normal-value prediction
circuit 30 can approximate the disturbance torque (Tq) acquired during the first period
(T
1) with a straight line (FL) to find a model equation for the disturbance torque.
[0051] In a case where repair or maintenance was implemented or the robot 1 was installed
in a second period (Tx) preceding a failure diagnosis time (to), the torque-normal-value
prediction circuit 30 predicts the disturbance-torque normal value (R') while assuming
the time immediately after implementing the repair or maintenance (t
2) or installing the robot 1 as the time when the robot 1 operates normally. The second
period (Tx) is, for example, one year.
[0052] Although illustration is omitted, in a case where the repair or maintenance was implemented
or the robot 1 was installed one year or more before the failure diagnosis time (to),
it is difficult to accurately predict the disturbance-torque normal value (R') at
the time when the repair or maintenance was implemented or a like time. For example,
a seasonal fluctuation component contained in the disturbance torque (Tq) cannot be
ignored. The torque-normal-value prediction circuit 30 then predicts the disturbance-torque
normal value (R') without the seasonal fluctuation component taken into account with
the period limited up to the second period (Tx) preceding the failure diagnosis time
(to). The disturbance-torque normal value (R') may of course be predicted with the
seasonal fluctuation component taken into account even in the case where the time
when the repair or maintenance was implemented was one year or less ago, in order
to enhance the prediction accuracy.
[0053] In a case where repair or maintenance was not implemented in the second period (Tx)
preceding the failure diagnosis time (to), the torque-normal-value prediction circuit
30 predicts the disturbance-torque normal value (R') with the seasonal fluctuation
component present in the disturbance torque (Tq) taken account. As illustrated in
Fig. 10, the torque-normal-value prediction circuit 30 predicts the disturbance-torque
normal value (R') while assuming a past time (t
3) coinciding in seasonal fluctuation (FC, FC') with the failure diagnosis time (to)
as the time when the robot 1 operates normally. For example, the seasonal fluctuation
component (FC, FC'), present in the disturbance torque (Tq), can be approximated with
a sinusoidal wave (c × sin (2πt) having a period of one year. If the failure diagnosis
time (to) is summer or winter, the past time (t
3), coinciding therewith in seasonal fluctuation, is the summer or winter one year
(Tx) ago. Meanwhile, if the failure diagnosis time (to) is spring or fall, the past
point (t
3), coinciding therewith in seasonal fluctuation, may be the fall or spring half a
year (Tx/2) ago.
[0054] Specifically, as illustrated in Fig. 10, the torque-normal-value prediction circuit
30 approximates the seasonal fluctuation component of the disturbance torque (Tq)
acquired during the first period (T
1) with a sinusoidal wave (FC). The torque-normal-value prediction circuit 30 creates
a sinusoidal wave (FC') by extending the sinusoidal wave (FC) to a past point that
is one year (Tx) or half a year ago. In this way, the torque-normal-value prediction
circuit 30 can predict the disturbance torque at the past time (t
3), coinciding in seasonal fluctuation (FC, FC') with the failure diagnosis time (to).
In other words, the seasonal fluctuation component can be removed from the disturbance
torque (Tq).
[0055] The torque-normal-value prediction circuit 30 approximates the aged deterioration
component of the disturbance torque (Tq) acquired during the first period (T
1) with a straight line (FL) as in Fig. 9, while approximating the seasonal fluctuation
component of the disturbance torque (Tq) with a sinusoidal wave. By combining the
approximated straight line (FL) and sinusoidal wave, the function (FCL) given in equation
(2) can be obtained. The torque-normal-value prediction circuit 30 sets the coefficients
(a, b, c) of equation (2) by a non-linear regression method.

[0056] Then, the torque-normal-value prediction circuit 30 calculates the disturbance torque
in the second period (Tx) preceding the failure diagnosis time (to) as a disturbance-torque
normal value (R').
[0057] The threshold setting circuit 31 sets a threshold (α) based on the disturbance-torque
normal value (R'), predicted by the torque-normal-value prediction circuit 30. Specifically,
it is possible to determine that a failure has occurred if a disturbance torque (Po)
at the failure diagnosis time (to) has increased by a certain value (k) or more from
the disturbance-torque normal value (R'), which is the disturbance torque at a time
when the robot 1 was operating normally. Thus, the threshold setting circuit 31 sets
a value obtained by adding the certain value (k) to the disturbance-torque normal
value (R') as the threshold (α). The certain value (k) is a common value among a plurality
of robots 1.
[0058] Next, a method of setting the threshold (α) in the second embodiment will be described
with reference to Fig. 12. In step S51, the torque-normal-value prediction circuit
30 reads the data on the disturbance torque (Tq) acquired during a predefined period
(first period) from the disturbance-torque database 17. In step S53, the torque-normal-value
prediction circuit 30 determines whether or not there is a record of implementation
of repair or maintenance, based on the information on the status of implementation
of repair or maintenance acquired by the repair-maintenance-information acquisition
circuit 29. If there is a record of implementation (YES in S53), the method proceeds
to step S55, in which the torque-normal-value prediction circuit 30 determines whether
or not one year (second period) or more has elapsed since the implementation of the
repair or maintenance. If one year or more has elapsed (YES in S55), it can be determined
that it is difficult to accurately predict the disturbance torque at the time when
the repair or maintenance was implemented. Thus, as in the case where there is no
record of implementation (NO in S53), the method proceeds to step S57, in which the
torque-normal-value prediction circuit 30 predicts the disturbance-torque normal value
(R') with the seasonal fluctuation component taken into account, as illustrated in
Figs. 10 and 11.
[0059] On the other hand, if there is a record of implementation of repair or maintenance
within one year before the failure diagnosis time (NO in S55), it can be determined
that it is possible to predict the disturbance torque at the time when the repair
or maintenance was implemented, without the seasonal fluctuation taken into account.
Thus, the method proceeds to step S59, in which the torque-normal-value prediction
circuit 30 predicts the disturbance-torque normal value (R') without the seasonal
fluctuation component taken into account, as illustrated in Fig. 9.
[0060] The method proceeds to step S61, in which the threshold setting circuit 31 sets the
value obtained by adding the certain value (k) to the predicted disturbance-torque
normal value (R') as the threshold (α). The determination process in step S11 in Fig.
6 is performed using the set threshold (α).
[0061] As described above, the second embodiment can bring about the following advantageous
effects.
[0062] Depending on the status of implementation of repair or maintenance on the robot 1,
its disturbance torque (Tq) may greatly vary. For this reason, the disturbance-torque
normal value (R') is predicted with the status of implementation of repair or maintenance
taken into account, and the threshold (α) is set based on the disturbance-torque normal
value (R'). In this way, it is possible to perform a more accurate failure diagnosis
taking into account the status of implementation of repair or maintenance.
[0063] As illustrated in Figs. 9 to 11, the torque-normal-value prediction circuit 30 predicts
the disturbance-torque normal value (R') based on the data on the disturbance torque
(Tq) acquired during the first period (T
1). This makes it possible to accurately predict the disturbance-torque normal value
(R'). For example, consider a comparative example where a disturbance torque (P
1) at a start point (t
1) of the first period (T
1) in Fig. 9 is predicted as the disturbance-torque normal value. In this case, the
threshold is a value obtained by adding the certain value (k) to the disturbance torque
(P
1). This threshold is greater than the disturbance torque (Po) at the failure diagnosis
time (to). Hence, in the comparative example, it will be wrongly determined that no
failure has occurred. In contrast, a disturbance torque (P
2) at the repair-maintenance time (t
2) before the start point (t
1) in Fig. 9 is predicted as the disturbance-torque normal value (R'). Since the aged
deterioration component is taken into account, the threshold (α = R' + k) is smaller
than that of the comparative example and is less than the disturbance torque (Po)
at the failure diagnosis time (to). Hence, in the second embodiment, it will be determined
that a failure has occurred. The same applies to Fig. 11.
[0064] The torque-normal-value prediction circuit 30 predicts the disturbance-torque normal
value (R') by using a regression equation including a straight line and the function
presented in equation 2 with the time-series change in the disturbance torque (Tq)
acquired during the first period (T
1). Since the disturbance torque (Tq) can be approximated using the regression equation,
the disturbance-torque normal value (R') can be accurately predicted.
[0065] In the case where repair or maintenance was implemented in the second period (Tx)
preceding the failure diagnosis time (to), the torque-normal-value prediction circuit
30 predicts the disturbance-torque normal value (R') while assuming the time when
the repair or maintenance was implemented as the time when the robot 1 operates normally.
As illustrated in Fig. 13, a disturbance torque that has decreased immediately after
implementing repair or maintenance can be considered the disturbance-torque normal
value (R'). Thus, it is possible to perform an accurate failure diagnosis even in
a case where the disturbance torque has increased due to aged deterioration.
[0066] In the case where repair or maintenance was not implemented in the second period
preceding the failure diagnosis time, the torque-normal-value prediction circuit 30
predicts the disturbance-torque normal value with the seasonal fluctuation of the
disturbance torque taken into account. The torque-normal-value prediction circuit
30 assumes a past time coinciding in seasonal fluctuation with the failure diagnosis
time as the time when the robot 1 operates normally. By taking the seasonal fluctuation
of the disturbance torque into account, it is possible to accurately predict a past
disturbance torque generated a long time before the failure diagnosis time.
[0067] As illustrated in Fig. 11, the torque-normal-value prediction circuit 30 uses the
function (FCL), which combines a sinusoidal wave approximating the seasonal fluctuation
and a straight line approximating the aged deterioration, as a regression equation.
This makes it possible to remove the seasonal fluctuation component and thus accurately
predict the disturbance-torque normal value (R').
[0068] Although embodiments of the present invention have been described above, it should
not be understood that the statements and the drawings constituting part of this disclosure
limit this invention. Various alternative embodiments, examples, and operation techniques
will become apparent to those skilled in the art from this disclosure.
REFERENCE SIGNS LIST
[0069]
- 1
- robot
- 2
- robot control unit
- 3
- failure diagnostic unit
- 6
- servomotor (motor)
- 11
- servo control part (torque detection part)
- 23
- failure diagnostic device
- 24
- position detection part
- 25
- routine-operation determination circuit
- 26
- reference-value calculation circuit
- 27
- torque correction circuit
- 28
- failure diagnostic circuit
- 29
- repair-maintenance-information acquisition circuit
- 30
- torque-normal-value prediction circuit
- 31
- threshold setting circuit
- FC
- seasonal fluctuation (sinusoidal wave)
- FCL
- function
- R'
- disturbance-torque normal value
- Tq
- disturbance torque
- Tq'
- corrected disturbance torque
- T1
- first period
- Tx
- second period
- α
- threshold
1. A failure diagnostic device for performing a failure diagnosis on a first multi-axis
robot (1) or a second multi-axis robot (1), the first and second multi-axis robots
being industrial robots (1), the device comprising:
a position detection part (24) that detects a movement position, which is a rotational
angle position, of each joint shaft included in the first and second multi-axis robots
(1);
a torque detection part (11) that detects a disturbance torque (Tq) applied to the
joint shafts of the first and second multi-axis robots (1);
characterized in that it further comprises:
a routine-operation determination circuit (25) that determines whether or not the
first and second multi-axis robots (1) are executing a predefined routine operation,
from the movement position detected by the position detection part (24);
a reference-value calculation circuit (26) that calculates a first disturbance-torque
reference value for the first multi-axis robot (1) and a second disturbance-torque
reference value for the second multi-axis robot (1) from the corresponding disturbance
torques (Tqa, Tqb) detected while the first and second multi-axis robots (1) execute
the routine operation, respectively;
a torque correction circuit (27) that calculates a first corrected disturbance torque
(Tqa') for the first multi-axis robot (1) by correcting the disturbance torque (Tqa)
detected while the first multi-axis robot (1) executes the routine operation using
the first disturbance-torque reference value calculated by the reference-value calculation
circuit (26), and calculates a second corrected disturbance torque (Tqb') for the
second multi-axis robot (1) by correcting the disturbance torque (Tqb) detected while
the second multi-axis robot (1) executes the routine operation using the second disturbance-torque
reference value calculated by the reference-value calculation circuit (26); and
a failure diagnostic circuit (28) that performs a failure diagnosis on the first multi-axis
robot (1) by comparing the first corrected disturbance torque (Tqa') and a threshold
(α), or a failure diagnosis on the second multi-axis robot (1) by comparing the second
corrected disturbance torque (Tqb') and the threshold (α),
wherein the routine operation is an operation of which a content is common to the
first and second multi-axis robots (1), and
wherein the threshold is a fixed value regardless of the first and second multi-axis
robots which execute the routine operation.
2. The failure diagnostic device according to claim 1, wherein
the reference-value calculation circuit (26) calculates a first representative value
of the disturbance torque (Tqa) for the first multi-axis robot (1) and a first amount
of change in the disturbance torque (Tqa) as the first disturbance-torque reference
value, and calculates a second representative value of the disturbance torque (Tqb)
for the second multi-axis robot (1) and a second amount of change in the disturbance
torque (Tqb) as the second disturbance-torque reference value, and
the torque correction circuit (27) acquires the first corrected disturbance torque
(Tqa') by subtracting the first representative value from the disturbance torque (Tqa)
of the first multi-axis robot (1) and dividing a value resulting from the subtraction
by the first amount of change, and acquires the second corrected disturbance torque
(Tqb') by subtracting the second representative value from the disturbance torque
(Tqb) of the second multi-axis robot (1) and dividing a value resulting from the subtraction
by the second amount of change.
3. The failure diagnostic device (23) according to claim 2, wherein
the first and second representative values are the averages of the disturbance torque
(Tqa, Tqb) detected during the execution of the routine operation by the first and
second multi-axis robots (1), respectively, and
the first and second amounts of change are the standard deviations of the disturbance
torque (Tqa, Tqb) detected during the execution of the routine operation by the first
and second multi-axis robots (1), respectively.
4. The failure diagnostic device according to claim 2, wherein
the first and second representative values are the smallest values of the disturbance
torque (Tqa, Tqb) detected during the execution of the routine operation by the first
and second multi-axis robots (1), respectively, and
the first and second amount of change are the differences between a largest value
and the smallest value of the disturbance torque (Tqa, Tqb) detected during the execution
of the routine operation by the first and second multi-axis robots (1), respectively.
5. The failure diagnostic device according to any one of claims 1 to 4, further comprising:
a repair-maintenance-information acquisition circuit (29) that acquires information
on a status of implementation of repair or maintenance on the first multi-axis robot
(1) or the second multi-axis robot (1);
a torque-normal-value prediction circuit (30) that predicts a disturbance-torque normal
value (R'), which is the disturbance torque (Tqa, Tqb) at a time when the first multi-axis
robot (1) or the second multi-axis robot (1) operates normally, by taking into account
the information acquired by the repair-maintenance-information acquisition circuit
(29); and
a threshold setting circuit (31) that sets the threshold (α) based on the disturbance-torque
normal value (R'), predicted by the torque-normal-value prediction circuit (30).
6. The failure diagnostic device (23) according to claim 5, wherein the torque-normal-value
prediction circuit (30) predicts the disturbance-torque normal value (R') based on
data on a disturbance torque (Tqa, Tqb) acquired during a first period (T1).
7. The failure diagnostic device (23) according to claim 6, wherein the torque-normal-value
prediction circuit (30) predicts the disturbance-torque normal value (R') by using
a regression equation with time-series change in the disturbance torque (Tqa, Tqb)
acquired during the first period (T1).
8. The failure diagnostic device according to claim 5, wherein in a case where the repair
or the maintenance was implemented in a second period (Tx) preceding a failure diagnosis
time, the torque-normal-value prediction circuit (30) predicts the disturbance-torque
normal value (R') while assuming a time when the repair or the maintenance was implemented
as the time when the first multi-axis robot (1) or the second multi-axis robot (1)
operates normally.
9. The failure diagnostic device according to claim 5, wherein in a case where the repair
or the maintenance was not implemented in a second period (Tx) preceding a failure
diagnosis time, the torque-normal-value prediction circuit (30) predicts the disturbance-torque
normal value (R') with a seasonal fluctuation (FC) of the disturbance torque (Tqa,
Tqb) taken into account by assuming a past time coinciding in the seasonal fluctuation
(FC) with the failure diagnosis time as the time when the first multi-axis robot (1)
or the second multi-axis robot (1) operates normally.
10. The failure diagnostic device according to claim 7, wherein the torque-normal-value
prediction circuit (30) uses, as the regression equation, a function combining a sinusoidal
wave approximating a seasonal fluctuation (FC) and a straight line approximating aged
deterioration.
11. The failure diagnostic device according to any one of claims 1 to 10, wherein the
torque correction circuit (27) calculates the first corrected disturbance torque (Tqa')
and the second corrected disturbance torque (Tqb') standardized between the first
and second multi-axis robots (1), respectively.
12. A failure diagnostic method of performing a failure diagnosis on a first multi-axis
robot (1) or a second multi-axis robot (1), the first and second multi-axis robots
(1) being industrial robots, the method comprising:
detecting a movement position, which is a rotational angle position, of each joint
shaft included in the first and second multi-axis robots (1);
detecting a disturbance torque (Tqa, Tqb) applied to the joint shafts of the first
and second multi-axis robots (1);
characterized by further comprising:
determining whether or not the first and second multi-axis robots (1) are executing
a predefined routine operation, from the detected movement position;
calculating a first disturbance-torque reference value for the first multi-axis robot
(1) and a second disturbance-torque reference value for the second multi-axis robot
(1) from the corresponding disturbance torques (Tqa, Tqb) detected while the respective
first and second multi-axis robots (1) execute the routine operation, respectively;
calculating a first corrected disturbance torque (Tqa') for the first multi-axis robot
(1) by correcting the disturbance torque (Tqa) detected while the first multi-axis
robot (1) executes the routine operation using the first disturbance-torque reference
value calculated by the reference-value calculation circuit (26), and calculating
a second corrected disturbance torque (Tqb') for the second multi-axis robot (1) by
correcting the disturbance torque (Tqb) detected while the second multi-axis robot
(1) executes the routine operation using the second disturbance-torque reference value
calculated by the reference-value calculation circuit (26); and
performing a failure diagnosis on the first multi-axis robot (1) by comparing the
first acquired corrected disturbance torque (Tqa') and a threshold (α), or a failure
diagnosis on the second multi-axis robot (1) by comparing the second acquired corrected
disturbance torque (Tqb') and the threshold (α),
wherein the routine operation is an operation of which a content is common to the
first and second multi-axis robots (1), and
wherein the threshold is a fixed value regardless of the first and second multi-axis
robots.